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A stationary wavelet transform and a time-frequency based spike detection algorithm for extracellular recorded data

机译:平稳小波变换和基于时频的尖峰检测算法用于细胞外记录数据

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Objective. Spike detection from extracellular recordings is a crucial preprocessing step when analyzing neuronal activity. The decision whether a specific part of the signal is a spike or not is important for any kind of other subsequent preprocessing steps, like spike sorting or burst detection in order to reduce the classification of erroneously identified spikes. Many spike detection algorithms have already been suggested, all working reasonably well whenever the signal-to-noise ratio is large enough. When the noise level is high, however, these algorithms have a poor performance. Approach. In this paper we present two new spike detection algorithms. The first is based on a stationary wavelet energy operator and the second is based on the time-frequency representation of spikes. Both algorithms are more reliable than all of the most commonly used methods. Main results. The performance of the algorithms is confirmed by using simulated data, resembling original data recorded from cortical neurons with multielectrode arrays. In order to demonstrate that the performance of the algorithms is not restricted to only one specific set of data, we also verify the performance using a simulated publicly available data set. We show that both proposed algorithms have the best performance under all tested methods, regardless of the signal-to-noise ratio in both data sets. Significance. This contribution will redound to the benefit of electrophysiological investigations of human cells. Especially the spatial and temporal analysis of neural network communications is improved by using the proposed spike detection algorithms.
机译:目的。在分析神经元活动时,从细胞外录音中检测峰值是至关重要的预处理步骤。信号的特定部分是否为尖峰的决定对于任何其他后续预处理步骤(如尖峰分类或突发检测)都很重要,以便减少错误识别的尖峰的分类。已经提出了许多尖峰检测算法,只要信噪比足够大,它们都可以正常工作。但是,当噪声水平很高时,这些算法的性能会很差。方法。在本文中,我们提出了两种新的尖峰检测算法。第一个基于固定的小波能量算子,第二个基于尖峰的时频表示。两种算法都比所有最常用的方法更可靠。主要结果。通过使用模拟数据来确认算法的性能,该模拟数据类似于使用多电极阵列从皮质神经元记录的原始数据。为了证明算法的性能不仅限于一组特定的数据,我们还使用模拟的公共可用数据集来验证性能。我们表明,无论在两个数据集中的信噪比如何,在所有测试方法下,两种算法都具有最佳性能。意义。这种贡献将使人体细胞的电生理研究受益。特别是通过使用所提出的尖峰检测算法,改进了神经网络通信的时空分析。

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